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GNNAdvisor: An Adaptive and Efficient Runtime System for GNN
  Acceleration on GPUs

GNNAdvisor: An Adaptive and Efficient Runtime System for GNN Acceleration on GPUs

11 June 2020
Yuke Wang
Boyuan Feng
Gushu Li
Shuangchen Li
Lei Deng
Yuan Xie
Yufei Ding
    GNN
ArXivPDFHTML

Papers citing "GNNAdvisor: An Adaptive and Efficient Runtime System for GNN Acceleration on GPUs"

18 / 18 papers shown
Title
Efficient GNN Training Through Structure-Aware Randomized Mini-Batching
Efficient GNN Training Through Structure-Aware Randomized Mini-Batching
Vignesh Balaji
Christos Kozyrakis
Gal Chechik
Haggai Maron
GNN
37
0
0
25 Apr 2025
Efficient Message Passing Architecture for GCN Training on HBM-based
  FPGAs with Orthogonal Topology On-Chip Networks
Efficient Message Passing Architecture for GCN Training on HBM-based FPGAs with Orthogonal Topology On-Chip Networks
Qizhe Wu
Letian Zhao
Yuchen Gui
Huawen Liang Xiaotian Wang
GNN
29
0
0
06 Nov 2024
CUTTANA: Scalable Graph Partitioning for Faster Distributed Graph
  Databases and Analytics
CUTTANA: Scalable Graph Partitioning for Faster Distributed Graph Databases and Analytics
Milad Rezaei Hajidehi
Sraavan Sridhar
Margo Seltzer
35
2
0
13 Dec 2023
AdaptGear: Accelerating GNN Training via Adaptive Subgraph-Level Kernels
  on GPUs
AdaptGear: Accelerating GNN Training via Adaptive Subgraph-Level Kernels on GPUs
Yangjie Zhou
Yaoxu Song
Jingwen Leng
Zihan Liu
Weihao Cui
Zhendong Zhang
Cong Guo
Quan Chen
Li-Wei Li
Minyi Guo
GNN
44
1
0
27 May 2023
The Evolution of Distributed Systems for Graph Neural Networks and their
  Origin in Graph Processing and Deep Learning: A Survey
The Evolution of Distributed Systems for Graph Neural Networks and their Origin in Graph Processing and Deep Learning: A Survey
Jana Vatter
R. Mayer
Hans-Arno Jacobsen
GNN
AI4TS
AI4CE
48
23
0
23 May 2023
FreshGNN: Reducing Memory Access via Stable Historical Embeddings for
  Graph Neural Network Training
FreshGNN: Reducing Memory Access via Stable Historical Embeddings for Graph Neural Network Training
Kezhao Huang
Haitian Jiang
Minjie Wang
Guangxuan Xiao
David Wipf
Xiang Song
Quan Gan
Zengfeng Huang
Jidong Zhai
Zheng-Wei Zhang
GNN
33
2
0
18 Jan 2023
PiPAD: Pipelined and Parallel Dynamic GNN Training on GPUs
PiPAD: Pipelined and Parallel Dynamic GNN Training on GPUs
Chunyang Wang
Desen Sun
Yunru Bai
GNN
AI4CE
50
15
0
01 Jan 2023
DGI: Easy and Efficient Inference for GNNs
DGI: Easy and Efficient Inference for GNNs
Peiqi Yin
Xiao Yan
Jinjing Zhou
Qiang Fu
Zhenkun Cai
James Cheng
Bo Tang
Minjie Wang
GNN
28
4
0
28 Nov 2022
Extreme Acceleration of Graph Neural Network-based Prediction Models for
  Quantum Chemistry
Extreme Acceleration of Graph Neural Network-based Prediction Models for Quantum Chemistry
Hatem Helal
J. Firoz
Jenna A. Bilbrey
M. M. Krell
Tom Murray
Ang Li
S. Xantheas
Sutanay Choudhury
GNN
46
5
0
25 Nov 2022
Analysis and Optimization of GNN-Based Recommender Systems on Persistent
  Memory
Analysis and Optimization of GNN-Based Recommender Systems on Persistent Memory
Yuwei Hu
Jiajie Li
Zhongming Yu
Zhiru Zhang
GNN
39
0
0
25 Jul 2022
SmartSAGE: Training Large-scale Graph Neural Networks using In-Storage
  Processing Architectures
SmartSAGE: Training Large-scale Graph Neural Networks using In-Storage Processing Architectures
Yunjae Lee
Jin-Won Chung
Minsoo Rhu
GNN
29
48
0
10 May 2022
PaSca: a Graph Neural Architecture Search System under the Scalable
  Paradigm
PaSca: a Graph Neural Architecture Search System under the Scalable Paradigm
Wentao Zhang
Yu Shen
Zheyu Lin
Yang Li
Xiaosen Li
Wenbin Ouyang
Yangyu Tao
Zhi-Xin Yang
Tengjiao Wang
GNN
37
59
0
01 Mar 2022
GROW: A Row-Stationary Sparse-Dense GEMM Accelerator for
  Memory-Efficient Graph Convolutional Neural Networks
GROW: A Row-Stationary Sparse-Dense GEMM Accelerator for Memory-Efficient Graph Convolutional Neural Networks
Ranggi Hwang
M. Kang
Jiwon Lee
D. Kam
Youngjoo Lee
Minsoo Rhu
GNN
16
20
0
01 Mar 2022
MariusGNN: Resource-Efficient Out-of-Core Training of Graph Neural
  Networks
MariusGNN: Resource-Efficient Out-of-Core Training of Graph Neural Networks
R. Waleffe
J. Mohoney
Theodoros Rekatsinas
Shivaram Venkataraman
GNN
26
25
0
04 Feb 2022
HP-GNN: Generating High Throughput GNN Training Implementation on
  CPU-FPGA Heterogeneous Platform
HP-GNN: Generating High Throughput GNN Training Implementation on CPU-FPGA Heterogeneous Platform
Yi-Chien Lin
Bingyi Zhang
Viktor Prasanna
GNN
19
34
0
22 Dec 2021
BGL: GPU-Efficient GNN Training by Optimizing Graph Data I/O and
  Preprocessing
BGL: GPU-Efficient GNN Training by Optimizing Graph Data I/O and Preprocessing
Tianfeng Liu
Yangrui Chen
Dan Li
Chuan Wu
Yibo Zhu
Jun He
Size Zheng
Hongzheng Chen
Hongzhi Chen
Chuanxiong Guo
GNN
34
77
0
16 Dec 2021
Accelerating Training and Inference of Graph Neural Networks with Fast
  Sampling and Pipelining
Accelerating Training and Inference of Graph Neural Networks with Fast Sampling and Pipelining
Tim Kaler
Nickolas Stathas
Anne Ouyang
A. Iliopoulos
Tao B. Schardl
C. E. Leiserson
Jie Chen
GNN
70
52
0
16 Oct 2021
Deep Graph Library: A Graph-Centric, Highly-Performant Package for Graph
  Neural Networks
Deep Graph Library: A Graph-Centric, Highly-Performant Package for Graph Neural Networks
Minjie Wang
Da Zheng
Zihao Ye
Quan Gan
Mufei Li
...
J. Zhao
Haotong Zhang
Alex Smola
Jinyang Li
Zheng-Wei Zhang
AI4CE
GNN
206
746
0
03 Sep 2019
1